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Mitigating Filter Bubbles in Recommendation Systems through Yin-Yang Neutralization


Centrala begrepp
The proposed Agent-based Information Neutrality (AbIN) model leverages the Yin-Yang theory to balance information perception and mitigate the filter bubble effect in recommendation systems without modifying the core recommendation algorithms.
Sammanfattning

The paper introduces the Agent-based Information Neutrality (AbIN) model, which aims to address the issue of filter bubbles in recommendation systems. The key highlights are:

  1. AbIN integrates the Yin-Yang (Y−&Y+) theory to provide balanced information recommendations and counter the filter bubble effect. It introduces a Yin-Yang Neutralization Control (YYNC) method to achieve sentiment balance in recommendations.

  2. AbIN adopts a distributed modeling approach with three independent agents - Original Preference-based Agent (OPA), User Agent (UA), and Information Neutrality Agent (INA). INA intercepts recommendations from OPA, applies YYNC to balance sentiments, and provides the final recommendations to UA.

  3. Extensive experiments on the MIND and IMDB datasets demonstrate AbIN's effectiveness in enhancing recommendation diversity, maintaining accuracy, and achieving Yin-Yang neutralization compared to various baseline models. The results show AbIN's potential in mitigating filter bubbles without modifying the core recommendation algorithms.

  4. The paper also discusses the impact of cluster size on the speed and extent of Yin-Yang neutralization, providing insights for practical implementation.

Overall, the AbIN model offers a novel solution to address the filter bubble problem in recommendation systems by leveraging the Yin-Yang theory to provide balanced information to users.

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Statistik
The paper does not contain any explicit numerical data or statistics. The key figures and metrics used in the evaluation are: Diversity metrics: Coverage, Repetition Rate (RR) Accuracy metrics: Hit, Precision (Pre) Yin-Yang Neutralization Degree: "best diff"
Citat
"While preference-based recommendation algorithms effectively enhance user engagement by recommending personalized content, they often result in the creation of 'filter bubbles'." "This paper integrates the Chinese Yin-Yang (Y−&Y+) theory into recommendation systems, proposing an Agent-based Model for Information Neutrality (AbIN). This model aims to address imbalances in information perception and mitigate the effects of filter bubbles while preserving the functionality of existing recommendation algorithms." "Achieving Y−&Y+ neutrality in recommendations is balancing these opposing sentiment energies, and providing users with broader choices rather than limiting them to specific preferences."

Viktiga insikter från

by Mengyan Wang... arxiv.org 04-09-2024

https://arxiv.org/pdf/2404.04906.pdf
Balancing Information Perception with Yin-Yang

Djupare frågor

How can the AbIN model be extended to handle dynamic user preferences and evolving information landscapes?

The AbIN model can be extended to handle dynamic user preferences and evolving information landscapes by incorporating a feedback loop mechanism. This mechanism would continuously gather user feedback on the recommendations provided by the system and adjust the recommendations accordingly. By analyzing user interactions and responses over time, the model can adapt to changes in user preferences and the information landscape. Additionally, implementing reinforcement learning techniques can enable the model to learn from user feedback and improve its recommendations iteratively. This adaptive approach ensures that the AbIN model remains effective in delivering personalized and balanced recommendations as user preferences evolve.

What are the potential challenges and limitations in deploying the AbIN model in real-world recommendation systems, and how can they be addressed?

One potential challenge in deploying the AbIN model in real-world recommendation systems is the computational complexity associated with processing large volumes of data and performing Y−&Y+ neutralization for diverse user preferences. This challenge can be addressed by optimizing the model's algorithms and leveraging parallel processing techniques to enhance efficiency. Another limitation could be the interpretability of the Y−&Y+ neutralization process, as it may be challenging for users to understand how recommendations are balanced. To overcome this, the model can incorporate explainable AI techniques to provide transparent insights into the neutralization process, increasing user trust and acceptance. Furthermore, the scalability of the AbIN model to accommodate a growing user base and diverse information sources is crucial. Implementing distributed computing frameworks and cloud-based solutions can help address scalability issues and ensure the model's effectiveness across large-scale recommendation systems. Additionally, ensuring data privacy and security in handling user preferences and interactions is essential. By implementing robust data protection measures and compliance with privacy regulations, the AbIN model can maintain user trust and safeguard sensitive information.

How can the Yin-Yang theory be further integrated with other philosophical or psychological frameworks to enhance the understanding and mitigation of filter bubbles in online environments?

Integrating the Yin-Yang theory with other philosophical or psychological frameworks can enhance the understanding and mitigation of filter bubbles in online environments by providing a holistic perspective on information perception and bias. One approach could be to combine the Yin-Yang theory with cognitive dissonance theory to explore how individuals reconcile conflicting information and beliefs when exposed to diverse viewpoints. By understanding the psychological mechanisms underlying information processing, the model can better address cognitive biases and promote open-mindedness among users. Moreover, integrating the Yin-Yang theory with ethical frameworks such as virtue ethics can guide the development of recommendation systems that prioritize fairness, transparency, and user well-being. By aligning the principles of balance and harmony from the Yin-Yang theory with ethical considerations, the model can ensure that recommendations are not only diverse and neutral but also ethically sound and socially responsible. This interdisciplinary approach can enrich the AbIN model's capabilities in mitigating filter bubbles and fostering a more inclusive and informed online environment.
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